Cost (or Price) Forecasting in the Face of Technological Advance
Authors: Harville, David A.1; Yashchin, Emmanuel1
Source: Journal of the American Statistical Association, Volume 102, Number 477, March 2007 , pp. 28-43(16)
Publisher: American Statistical Association
Abstract:
The problem considered involves forecasting the future costs of hard drives of various capacities and speeds of revolution or, more generally, forecasting the future costs of various quantifiably different versions of a commodity that is subject to technological advance. In the primary development, it is supposed that the data consist of past and present costs. A model is proposed in which the past, present, and future costs of each version are related with each other and also with the costs of the other versions. The model encompasses a stochastic version of an empirical relationship known as Moore's law. A forecasting methodology was developed by adopting a Bayesian approach and taking the prior distribution to be of a relatively tractable form. An implementation of the Gibbs sampler was devised for making draws from the posterior distribution of the future costs; the forecasts are based on those draws. The proposed methodology was used to obtain forecasts retrospectively from data accumulated (over a 5-year period) on the quarterly costs of hard drives. The accuracy of the longer-term forecasts compared favorably with those of certain benchmark forecasts, whereas the accuracy of the shorter-term forecasts compared less favorably. Greater accuracy can be achieved through enhancements to the proposed methodology that provide for the use of supplementary information (i.e., information that is relevant but not fully reflected in the past and present costs).Keywords: BAYESIAN INFERENCE; GIBBS SAMPLER; MARKOV CHAIN MONTE CARLO; MOORE'S LAW
Document Type: Research article
DOI: 10.1198/016214506000001149
Affiliations: 1: Mathematical Sciences Department, IBM Thomas J. Watson Research Center, Yorktown Heights, NY 10598
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